Remote Sensing (Sep 2021)

FEF-Net: A Deep Learning Approach to Multiview SAR Image Target Recognition

  • Jifang Pei,
  • Zhiyong Wang,
  • Xueping Sun,
  • Weibo Huo,
  • Yin Zhang,
  • Yulin Huang,
  • Junjie Wu,
  • Jianyu Yang

DOI
https://doi.org/10.3390/rs13173493
Journal volume & issue
Vol. 13, no. 17
p. 3493

Abstract

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Synthetic aperture radar (SAR) is an advanced microwave imaging system of great importance. The recognition of real-world targets from SAR images, i.e., automatic target recognition (ATR), is an attractive but challenging issue. The majority of existing SAR ATR methods are designed for single-view SAR images. However, multiview SAR images contain more abundant classification information than single-view SAR images, which benefits automatic target classification and recognition. This paper proposes an end-to-end deep feature extraction and fusion network (FEF-Net) that can effectively exploit recognition information from multiview SAR images and can boost the target recognition performance. The proposed FEF-Net is based on a multiple-input network structure with some distinct and useful learning modules, such as deformable convolution and squeeze-and-excitation (SE). Multiview recognition information can be effectively extracted and fused with these modules. Therefore, excellent multiview SAR target recognition performance can be achieved by the proposed FEF-Net. The superiority of the proposed FEF-Net was validated based on experiments with the moving and stationary target acquisition and recognition (MSTAR) dataset.

Keywords